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Qualitative Modeling for Fault Diagnosis Based on Physical Knowledge and Historical Operation Data under Normal Operating Conditions

机译:基于正常操作条件下基于物理知识和历史运行数据的故障诊断定性建模

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Fault diagnosis is a critical task in the daily operation of chemical processes. In this paper, a hybrid fault diagnosis method is proposed that combines a process-knowledge-based qualitative reasoning technique with fault detection based on a data-driven process-monitoring technique, without using any faulty datasets. Extended attributes, which are additional process feature variables generated from normal-operating-condition knowledge, are utilized to integrate the two techniques. The process qualitative reasoning model is simplified for combining these techniques and easing the modeling. This fault diagnosis method provides multiple reasoning routes for several potential fault root candidates. Each candidate and variable in its reasoning routes are weighted according to the results of the data-driven fault-detection method. Therefore, a priority list is presented to chemical engineers for further field examinations. The effectiveness of this method is validated using the Tennessee Eastman process, and novel diagnosis results are subsequently achieved.
机译:故障诊断是化学过程日常运行中的关键任务。本文提出了一种混合故障诊断方法,其基于数据驱动过程监控技术结合了基于流程的定性推理技术,而不使用任何故障数据集。延伸属性是从正常操作条件知识生成的其他进程特征变量,用于集成两种技术。简化了该过程定性推理模型,用于组合这些技术并缓解建模。此故障诊断方法为几个潜在的故障根候选提供多个推理路由。其推理路线中的每个候选和变量都根据数据驱动的故障检测方法的结果而加权。因此,将优先列表呈现给化学工程师,以进一步进行实地考试。使用田纳西州伊斯坦德工艺进行验证该方法的有效性,随后实现了新的诊断结果。

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